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Constructing unbiased prediction limits on future outcomes under parametric uncertainty of underlying models via pivotal quantity averaging approach

机译:通过枢轴数量平均方法构建在底层模型的参数不确定性下未偏见的预测限制

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AbstractThis paper presents a new simple, efficient and useful technique for constructing lower and upper unbiased prediction limits on outcomes in future samples under parametric uncertainty of underlying models. For instance, consider a situation where such limits are required. A customer has placed an order for a product which has an underlying time-to-failure distribution. The terms of his purchase call forkmonthly shipments. From each shipment the customer will select a random sample ofqunits and accept the shipment only if the smallest time to failure for this sample exceeds a specified lower limit. The manufacturer wishes to use the results of an experimental sample ofnunits to calculate this limit so that the probability is γ that allkshipments will be accepted. It is assumed that thenexperimental units and thekqfuture units are random samples from the same population. In this paper, attention is restricted to invariant families of distributions. The pivotal quantity averaging approach used here emphasizes pivotal quantities relevant for obtaining ancillary statistics and is applicable whenever the statistical problem is invariant under a group of transformations that acts transitively on the parameter space. It does not require the construction of any tables and is applicable whether the past data are complete or Type II censored. The proposed pivotal quantity averaging approach is conceptually simple and easy to use. For illustration, a left-truncated Weibull, two-parameter exponential, and Pareto distribution are considered. A practical numerical example is given.]]>
机译:<![CDATA [<标题>抽象 ara>本文提出了一种新的简单,高效和有用的技术,用于在底层模型的参数不确定下的未来样品中构建较低和上部无偏的预测限制。例如,考虑需要这种限制的情况。客户已为具有潜在故障时间分配的产品订购。他的购买条款<重点类型=“斜体”> K 每月出货量。从每次发货时,客户将选择<重点类型=“斜体”> q 单位的随机样本,并且只有当该样本的最小失败时间超过指定的下限时,才接受货件。制造商希望使用<重点类型=“斜体”> n 单位的实验样本的结果来计算该限制,使得概率是γ,即所有<重点类型=“斜体”> k 将被接受出货量。假设<重点类型=“斜体”> n 实验单元和<重点类型=“斜体”> KQ 未来单位是来自相同群体的随机样本。在本文中,注意力仅限于不变的分布族。这里使用的枢轴量平均方法强调了与获得辅助统计相关的关键数量,并且只要统计问题在一组转换的转换中不变,就可以在一次性地对参数空间行动。它不需要构建任何表,并且适用过去数据是否完整或II型禁用。所提出的枢轴数量平均方法是概念性简单且易于使用的。有关插图,考虑了左截断的威布尔,双参数指数和帕累托分布。给出了一个实际的数值例子。]]>

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